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A Long-Short Term Memory Recurrent Neural Network Based Reinforcement Learning Controller for Office Heating Ventilation and Air Conditioning Systems

机译:基于长期记忆递归神经网络的强化学习控制器,用于办公室供暖通风和空调系统

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Energy optimization in buildings by controlling the Heating Ventilation and Air Conditioning (HVAC) system is being researched extensively. In this paper, a model-free actor-critic Reinforcement Learning (RL) controller is designed using a variant of artificial recurrent neural networks called Long-Short-Term Memory (LSTM) networks. Optimization of thermal comfort alongside energy consumption is the goal in tuning this RL controller. The test platform, our office space, is designed using SketchUp. Using OpenStudio, the HVAC system is installed in the office. The control schemes (ideal thermal comfort, a traditional control and the RL control) are implemented in MATLAB. Using the Building Control Virtual Test Bed (BCVTB), the control of the thermostat schedule during each sample time is implemented for the office in EnergyPlus alongside local weather data. Results from training and validation indicate that the RL controller improves thermal comfort by an average of 15% and energy efficiency by an average of 2.5% as compared to other strategies mentioned.
机译:通过控制采暖通风和空调(HVAC)系统对建筑物进行能源优化的研究正在广泛进行。在本文中,使用称为长期短时记忆(LSTM)网络的人工递归神经网络的变体,设计了一种无模型的行为者批评强化学习(RL)控制器。优化热舒适性和能耗是调整此RL控制器的目标。测试平台,我们的办公空间,是使用SketchUp设计的。使用OpenStudio,将HVAC系统安装在办公室中。控制方案(理想的热舒适度,传统控制和RL控制)在MATLAB中实现。使用楼宇控制虚拟测试台(BCVTB),可以在EnergyPlus中与当地天气数据一起在每个采样时间内对恒温器时间表进行控制。训练和验证的结果表明,与提到的其他策略相比,RL控制器平均可将热舒适度提高15%,将能源效率提高2.5%。

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